{
 "cells": [
  {
   "cell_type": "code",
   "execution_count": 1,
   "metadata": {
    "colab": {},
    "colab_type": "code",
    "id": "wYtuKeK0dImp"
   },
   "outputs": [],
   "source": [
    "import csv\n",
    "import numpy as np\n",
    "import tensorflow as tf\n",
    "from tensorflow.keras.preprocessing.image import ImageDataGenerator\n"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {
    "colab_type": "text",
    "id": "EmMyh9_mkDHF"
   },
   "source": [
    "\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {
    "colab": {
     "height": 106
    },
    "colab_type": "code",
    "executionInfo": {
     "elapsed": 604500,
     "status": "ok",
     "timestamp": 1553273921672,
     "user": {
      "displayName": "Laurence Moroney",
      "photoUrl": "https://lh3.googleusercontent.com/-RcxktLY-TBk/AAAAAAAAAAI/AAAAAAAAABY/b4V4dTIqmPI/s64/photo.jpg",
      "userId": "06401446828348966425"
     },
     "user_tz": 420
    },
    "id": "IcLOZlnnc_N7",
    "outputId": "f902689f-06ab-422b-a15d-ceee438a19cb",
    "scrolled": true
   },
   "outputs": [],
   "source": []
  },
  {
   "cell_type": "code",
   "execution_count": 2,
   "metadata": {
    "colab": {
     "height": 86
    },
    "colab_type": "code",
    "executionInfo": {
     "elapsed": 23161,
     "status": "ok",
     "timestamp": 1553273951883,
     "user": {
      "displayName": "Laurence Moroney",
      "photoUrl": "https://lh3.googleusercontent.com/-RcxktLY-TBk/AAAAAAAAAAI/AAAAAAAAABY/b4V4dTIqmPI/s64/photo.jpg",
      "userId": "06401446828348966425"
     },
     "user_tz": 420
    },
    "id": "4kxw-_rmcnVu",
    "outputId": "3d62714a-acc3-4aef-98ec-10fee8e7ab50"
   },
   "outputs": [
    {
     "ename": "FileNotFoundError",
     "evalue": "[Errno 2] No such file or directory: 'sign_mnist_train.csv'",
     "output_type": "error",
     "traceback": [
      "\u001b[1;31m---------------------------------------------------------------------------\u001b[0m",
      "\u001b[1;31mFileNotFoundError\u001b[0m                         Traceback (most recent call last)",
      "\u001b[1;32m<ipython-input-2-67d335c5b50a>\u001b[0m in \u001b[0;36m<module>\u001b[1;34m\u001b[0m\n\u001b[0;32m     19\u001b[0m \u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m     20\u001b[0m \u001b[1;33m\u001b[0m\u001b[0m\n\u001b[1;32m---> 21\u001b[1;33m \u001b[0mtraining_images\u001b[0m\u001b[1;33m,\u001b[0m \u001b[0mtraining_labels\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0mget_data\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;34m'sign_mnist_train.csv'\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0m\u001b[0;32m     22\u001b[0m \u001b[0mtesting_images\u001b[0m\u001b[1;33m,\u001b[0m \u001b[0mtesting_labels\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0mget_data\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;34m'sign_mnist_test.csv'\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m     23\u001b[0m \u001b[1;33m\u001b[0m\u001b[0m\n",
      "\u001b[1;32m<ipython-input-2-67d335c5b50a>\u001b[0m in \u001b[0;36mget_data\u001b[1;34m(filename)\u001b[0m\n\u001b[0;32m      1\u001b[0m \u001b[1;32mdef\u001b[0m \u001b[0mget_data\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mfilename\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m:\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[1;32m----> 2\u001b[1;33m     \u001b[1;32mwith\u001b[0m \u001b[0mopen\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mfilename\u001b[0m\u001b[1;33m)\u001b[0m \u001b[1;32mas\u001b[0m \u001b[0mtraining_file\u001b[0m\u001b[1;33m:\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0m\u001b[0;32m      3\u001b[0m         \u001b[0mcsv_reader\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0mcsv\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mreader\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mtraining_file\u001b[0m\u001b[1;33m,\u001b[0m \u001b[0mdelimiter\u001b[0m\u001b[1;33m=\u001b[0m\u001b[1;34m','\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m      4\u001b[0m         \u001b[0mfirst_line\u001b[0m \u001b[1;33m=\u001b[0m \u001b[1;32mTrue\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m      5\u001b[0m         \u001b[0mtemp_images\u001b[0m \u001b[1;33m=\u001b[0m \u001b[1;33m[\u001b[0m\u001b[1;33m]\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n",
      "\u001b[1;31mFileNotFoundError\u001b[0m: [Errno 2] No such file or directory: 'sign_mnist_train.csv'"
     ]
    }
   ],
   "source": [
    "def get_data(filename):\n",
    "    with open(filename) as training_file:\n",
    "        csv_reader = csv.reader(training_file, delimiter=',')\n",
    "        first_line = True\n",
    "        temp_images = []\n",
    "        temp_labels = []\n",
    "        for row in csv_reader:\n",
    "            if first_line:\n",
    "                # print(\"Ignoring first line\")\n",
    "                first_line = False\n",
    "            else:\n",
    "                temp_labels.append(row[0])\n",
    "                image_data = row[1:785]\n",
    "                image_data_as_array = np.array_split(image_data, 28)\n",
    "                temp_images.append(image_data_as_array)\n",
    "        images = np.array(temp_images).astype('float')\n",
    "        labels = np.array(temp_labels).astype('float')\n",
    "    return images, labels\n",
    "\n",
    "\n",
    "training_images, training_labels = get_data('sign_mnist_train.csv')\n",
    "testing_images, testing_labels = get_data('sign_mnist_test.csv')\n",
    "\n",
    "print(training_images.shape)\n",
    "print(training_labels.shape)\n",
    "print(testing_images.shape)\n",
    "print(testing_labels.shape)\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 4,
   "metadata": {
    "colab": {
     "height": 52
    },
    "colab_type": "code",
    "executionInfo": {
     "elapsed": 355,
     "status": "ok",
     "timestamp": 1553273979900,
     "user": {
      "displayName": "Laurence Moroney",
      "photoUrl": "https://lh3.googleusercontent.com/-RcxktLY-TBk/AAAAAAAAAAI/AAAAAAAAABY/b4V4dTIqmPI/s64/photo.jpg",
      "userId": "06401446828348966425"
     },
     "user_tz": 420
    },
    "id": "awoqRpyZdQkD",
    "outputId": "a223a6f6-29f2-4f5f-8ccf-80f36d3368d1"
   },
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "(27455, 28, 28, 1)\n",
      "(7172, 28, 28, 1)\n"
     ]
    }
   ],
   "source": [
    "training_images = np.expand_dims(training_images, axis=3)\n",
    "testing_images = np.expand_dims(testing_images, axis=3)\n",
    "\n",
    "train_datagen = ImageDataGenerator(\n",
    "    rescale=1. / 255,\n",
    "    rotation_range=40,\n",
    "    width_shift_range=0.2,\n",
    "    height_shift_range=0.2,\n",
    "    shear_range=0.2,\n",
    "    zoom_range=0.2,\n",
    "    horizontal_flip=True,\n",
    "    fill_mode='nearest')\n",
    "\n",
    "validation_datagen = ImageDataGenerator(\n",
    "    rescale=1. / 255)\n",
    "\n",
    "print(training_images.shape)\n",
    "print(testing_images.shape)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 5,
   "metadata": {
    "colab": {
     "height": 570
    },
    "colab_type": "code",
    "executionInfo": {
     "elapsed": 552736,
     "status": "ok",
     "timestamp": 1553274558450,
     "user": {
      "displayName": "Laurence Moroney",
      "photoUrl": "https://lh3.googleusercontent.com/-RcxktLY-TBk/AAAAAAAAAAI/AAAAAAAAABY/b4V4dTIqmPI/s64/photo.jpg",
      "userId": "06401446828348966425"
     },
     "user_tz": 420
    },
    "id": "Rmb7S32cgRqS",
    "outputId": "d1cbfc47-3a0a-4605-f1be-fa968032283d"
   },
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Epoch 1/15\n",
      "857/857 [==============================] - 21s 24ms/step - loss: 2.8540 - acc: 0.1562 - val_loss: 1.9644 - val_acc: 0.3100\n",
      "Epoch 2/15\n",
      "857/857 [==============================] - 46s 54ms/step - loss: 2.1131 - acc: 0.2188 - val_loss: 1.5558 - val_acc: 0.4855\n",
      "Epoch 3/15\n",
      "857/857 [==============================] - 40s 47ms/step - loss: 1.7423 - acc: 0.3438 - val_loss: 1.1643 - val_acc: 0.6115\n",
      "Epoch 4/15\n",
      "857/857 [==============================] - 30s 35ms/step - loss: 1.4933 - acc: 0.4688 - val_loss: 1.1572 - val_acc: 0.6064\n",
      "Epoch 5/15\n",
      "857/857 [==============================] - 22s 26ms/step - loss: 1.3521 - acc: 0.7500 - val_loss: 0.8973 - val_acc: 0.7167\n",
      "Epoch 6/15\n",
      "857/857 [==============================] - 21s 24ms/step - loss: 1.2332 - acc: 0.5625 - val_loss: 0.8082 - val_acc: 0.7200\n",
      "Epoch 7/15\n",
      "857/857 [==============================] - 44s 51ms/step - loss: 1.1631 - acc: 0.5938 - val_loss: 0.8671 - val_acc: 0.7352\n",
      "Epoch 8/15\n",
      "857/857 [==============================] - 58s 67ms/step - loss: 1.0857 - acc: 0.7188 - val_loss: 0.7608 - val_acc: 0.7949\n",
      "Epoch 9/15\n",
      "857/857 [==============================] - 23s 26ms/step - loss: 1.0197 - acc: 0.6562 - val_loss: 0.6978 - val_acc: 0.7674\n",
      "Epoch 10/15\n",
      "857/857 [==============================] - 28s 33ms/step - loss: 0.9711 - acc: 0.6875 - val_loss: 0.7027 - val_acc: 0.7984\n",
      "Epoch 11/15\n",
      "857/857 [==============================] - 53s 61ms/step - loss: 0.9076 - acc: 0.5625 - val_loss: 0.5784 - val_acc: 0.8238\n",
      "Epoch 12/15\n",
      "857/857 [==============================] - 64s 75ms/step - loss: 0.8764 - acc: 0.5938 - val_loss: 0.6079 - val_acc: 0.8133\n",
      "Epoch 13/15\n",
      "857/857 [==============================] - 28s 33ms/step - loss: 0.8410 - acc: 0.7500 - val_loss: 0.4547 - val_acc: 0.8182\n",
      "Epoch 14/15\n",
      "857/857 [==============================] - 22s 26ms/step - loss: 0.8045 - acc: 0.5312 - val_loss: 0.2415 - val_acc: 0.8496\n",
      "Epoch 15/15\n",
      "857/857 [==============================] - 47s 55ms/step - loss: 0.7836 - acc: 0.7188 - val_loss: 0.3857 - val_acc: 0.8425\n",
      "7172/7172 [==============================] - 4s 596us/step - loss: 6.9243 - acc: 0.5661\n"
     ]
    },
    {
     "data": {
      "text/plain": [
       "[6.92426086682151, 0.56609035]"
      ]
     },
     "execution_count": 5,
     "metadata": {
      "tags": []
     },
     "output_type": "execute_result"
    }
   ],
   "source": [
    "model = tf.keras.models.Sequential([\n",
    "    tf.keras.layers.Conv2D(64, (3, 3), activation='relu', input_shape=(28, 28, 1)),\n",
    "    tf.keras.layers.MaxPooling2D(2, 2),\n",
    "    tf.keras.layers.Conv2D(64, (3, 3), activation='relu'),\n",
    "    tf.keras.layers.MaxPooling2D(2, 2),\n",
    "    tf.keras.layers.Flatten(),\n",
    "    tf.keras.layers.Dense(128, activation=tf.nn.relu),\n",
    "    tf.keras.layers.Dense(26, activation=tf.nn.softmax)])\n",
    "\n",
    "# Before modification\n",
    "# model.compile(optimizer = tf.train.AdamOptimizer(),\n",
    "#              loss = 'sparse_categorical_crossentropy',\n",
    "#              metrics=['accuracy'])\n",
    "#\n",
    "\n",
    "# After modification\n",
    "model.compile(optimizer = tf.optimizers.Adam(),\n",
    "              loss = 'sparse_categorical_crossentropy',\n",
    "              metrics=['accuracy'])\n",
    "\n",
    "history = model.fit_generator(train_datagen.flow(training_images, training_labels, batch_size=32),\n",
    "                              steps_per_epoch=len(training_images) / 32,\n",
    "                              epochs=5,\n",
    "                              validation_data=validation_datagen.flow(testing_images, testing_labels, batch_size=32),\n",
    "                              validation_steps=len(testing_images) / 32)\n",
    "\n",
    "model.evaluate(testing_images, testing_labels)\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 6,
   "metadata": {
    "colab": {
     "height": 561
    },
    "colab_type": "code",
    "executionInfo": {
     "elapsed": 1199,
     "status": "ok",
     "timestamp": 1553274582474,
     "user": {
      "displayName": "Laurence Moroney",
      "photoUrl": "https://lh3.googleusercontent.com/-RcxktLY-TBk/AAAAAAAAAAI/AAAAAAAAABY/b4V4dTIqmPI/s64/photo.jpg",
      "userId": "06401446828348966425"
     },
     "user_tz": 420
    },
    "id": "_Q3Zpr46dsij",
    "outputId": "fd4001fb-9a21-4192-dbdb-9a2f2174e769"
   },
   "outputs": [
    {
     "data": {
      "image/png": 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NePPNt1m4cAE6nQ6ZTMb//d9iWrduw8svv8a8ebPx8fEhJKTHfbWVb5vq7nvh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\nHHr3rvWYtuekKRRfukTamq9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6dBEEAevWbfCc8hQOPXvh3crHfHvODwBSSznez8zk1gfv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\nYII=\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f2be0af5310>"
      ]
     },
     "metadata": {
      "tags": []
     },
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": 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BAXffPYkJEybTps313RrExcWycuV/kGWZmTPv49ixI/Tq1ZuVK19lwIBB/OUv00lNTWHG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\nEMufiEiDWP5ERBr0X+qpJyKRhKK8AAAAAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x7f2bd4a223d0>"
      ]
     },
     "metadata": {
      "tags": []
     },
     "output_type": "display_data"
    }
   ],
   "source": [
    "import matplotlib.pyplot as plt\n",
    "acc = history.history['acc']\n",
    "val_acc = history.history['val_acc']\n",
    "loss = history.history['loss']\n",
    "val_loss = history.history['val_loss']\n",
    "\n",
    "epochs = range(len(acc))\n",
    "\n",
    "plt.plot(epochs, acc, 'r', label='Training accuracy')\n",
    "plt.plot(epochs, val_acc, 'b', label='Validation accuracy')\n",
    "plt.title('Training and validation accuracy')\n",
    "plt.legend()\n",
    "plt.figure()\n",
    "\n",
    "plt.plot(epochs, loss, 'r', label='Training Loss')\n",
    "plt.plot(epochs, val_loss, 'b', label='Validation Loss')\n",
    "plt.title('Training and validation loss')\n",
    "plt.legend()\n",
    "\n",
    "plt.show()"
   ]
  }
 ],
 "metadata": {
  "colab": {
   "name": "Exercise 8 - Answer.ipynb",
   "provenance": [],
   "version": "0.3.2"
  },
  "kernelspec": {
   "display_name": "Python 3",
   "language": "python",
   "name": "python3"
  },
  "language_info": {
   "codemirror_mode": {
    "name": "ipython",
    "version": 3
   },
   "file_extension": ".py",
   "mimetype": "text/x-python",
   "name": "python",
   "nbconvert_exporter": "python",
   "pygments_lexer": "ipython3",
   "version": "3.7.0"
  }
 },
 "nbformat": 4,
 "nbformat_minor": 1
}
